A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysis

Abstract There is an exponential growth in textual content generation every day in today's world. In-app messaging such as Telegram and WhatsApp, social media websites such as Instagram and Facebook, e-commerce websites like Amazon, Google searches, news publishing websites, and a variety of ad...

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Main Authors: Gagandeep Kaur, Amit Sharma
Format: Article
Language:English
Published: SpringerOpen 2023-01-01
Series:Journal of Big Data
Subjects:
Online Access:https://doi.org/10.1186/s40537-022-00680-6
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author Gagandeep Kaur
Amit Sharma
author_facet Gagandeep Kaur
Amit Sharma
author_sort Gagandeep Kaur
collection DOAJ
description Abstract There is an exponential growth in textual content generation every day in today's world. In-app messaging such as Telegram and WhatsApp, social media websites such as Instagram and Facebook, e-commerce websites like Amazon, Google searches, news publishing websites, and a variety of additional sources are the possible suppliers. Every instant, all these sources produce massive amounts of text data. The interpretation of such data can help business owners analyze the social outlook of their product, brand, or service and take necessary steps. The development of a consumer review summarization model using Natural Language Processing (NLP) techniques and Long short-term memory (LSTM) to present summarized data and help businesses obtain substantial insights into their consumers' behavior and choices is the topic of this research. A hybrid approach for analyzing sentiments is presented in this paper. The process comprises pre-processing, feature extraction, and sentiment classification. Using NLP techniques, the pre-processing stage eliminates the undesirable data from input text reviews. For extracting the features effectively, a hybrid method comprising review-related features and aspect-related features has been introduced for constructing the distinctive hybrid feature vector corresponding to each review. The sentiment classification is performed using the deep learning classifier LSTM. We experimentally evaluated the proposed model using three different research datasets. The model achieves the average precision, average recall, and average F1-score of 94.46%, 91.63%, and 92.81%, respectively.
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spelling doaj.art-12c1bf366fab4c3fac63be62f4093fd12023-01-15T12:14:15ZengSpringerOpenJournal of Big Data2196-11152023-01-0110112310.1186/s40537-022-00680-6A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysisGagandeep Kaur0Amit Sharma1Research Scholar at Department of CSE, Lovely Professional UniversityLovely Professional UniversityAbstract There is an exponential growth in textual content generation every day in today's world. In-app messaging such as Telegram and WhatsApp, social media websites such as Instagram and Facebook, e-commerce websites like Amazon, Google searches, news publishing websites, and a variety of additional sources are the possible suppliers. Every instant, all these sources produce massive amounts of text data. The interpretation of such data can help business owners analyze the social outlook of their product, brand, or service and take necessary steps. The development of a consumer review summarization model using Natural Language Processing (NLP) techniques and Long short-term memory (LSTM) to present summarized data and help businesses obtain substantial insights into their consumers' behavior and choices is the topic of this research. A hybrid approach for analyzing sentiments is presented in this paper. The process comprises pre-processing, feature extraction, and sentiment classification. Using NLP techniques, the pre-processing stage eliminates the undesirable data from input text reviews. For extracting the features effectively, a hybrid method comprising review-related features and aspect-related features has been introduced for constructing the distinctive hybrid feature vector corresponding to each review. The sentiment classification is performed using the deep learning classifier LSTM. We experimentally evaluated the proposed model using three different research datasets. The model achieves the average precision, average recall, and average F1-score of 94.46%, 91.63%, and 92.81%, respectively.https://doi.org/10.1186/s40537-022-00680-6Sentiment analysisAspect feature extractionDeep learningLSTMHybrid featuresConsumer review summarization
spellingShingle Gagandeep Kaur
Amit Sharma
A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysis
Journal of Big Data
Sentiment analysis
Aspect feature extraction
Deep learning
LSTM
Hybrid features
Consumer review summarization
title A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysis
title_full A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysis
title_fullStr A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysis
title_full_unstemmed A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysis
title_short A deep learning-based model using hybrid feature extraction approach for consumer sentiment analysis
title_sort deep learning based model using hybrid feature extraction approach for consumer sentiment analysis
topic Sentiment analysis
Aspect feature extraction
Deep learning
LSTM
Hybrid features
Consumer review summarization
url https://doi.org/10.1186/s40537-022-00680-6
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